Elsevier

Journal of Multivariate Analysis

Volume 173, September 2019, Pages 38-50
Journal of Multivariate Analysis

A semiparametric efficient estimator in case-control studies for gene–environment independent models

https://doi.org/10.1016/j.jmva.2019.01.006Get rights and content
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Abstract

Case-controls studies are popular epidemiological designs for detecting gene–environment interactions in the etiology of complex diseases, where the genetic susceptibility and environmental exposures may often be reasonably assumed independent in the source population. Various papers have presented analytical methods exploiting gene–environment independence to achieve better efficiency, all of which require either a rare disease assumption or a distributional assumption on the genetic variables. We relax both assumptions. We construct a semiparametric estimator in case-control studies exploiting gene–environment independence, while the distributions of genetic susceptibility and environmental exposures are both unspecified and the disease rate is assumed unknown and is not required to be close to zero. The resulting estimator is semiparametric efficient and its superiority over prospective logistic regression, the usual analysis in case-control studies, is demonstrated in various numerical illustrations.

AMS 2010 subject classifications

primary
62H12
secondary
62F12

Keywords

Biased samples
Case-control study
Gene–environment independence
Gene–environment interaction
Semiparametric estimation

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